Balanced Distribution Adaptation for Transfer Learning
Institute of Computing Technology · Chinese Academy of Sciences · +4 more institutions
Abstract
Transfer learning has achieved promising results by leveraging knowledge from the source domain to annotate the target domain which has few or none labels. Existing methods often seek to minimize the distribution divergence between domains, such as the marginal distribution, the conditional distribution or both. However, these two distances are often treated equally in existing algorithms, which will result in poor performance in real applications. Moreover, existing methods usually assume that the dataset is balanced, which also limits their performances on imbalanced tasks that are quite common in real problems. To tackle the distribution adaptation problem, in this paper, we propose a novel transfer…
Citation impact
- FWCI
- 35.58
- Percentile
- 100%
- References
- 27
Authors
5- JWJindong WangCorresponding
Institute of Computing Technology, Chinese Academy of Sciences, China Mobile (China), University of Chinese Academy of Sciences
- YCYiqiang Chen
Institute of Computing Technology, Chinese Academy of Sciences, China Mobile (China), University of Chinese Academy of Sciences
- SHShuji Hao
Institute of High Performance Computing
- WFWenjie Feng
University of Chinese Academy of Sciences
- ZSZhiqi Shen
Nanyang Technological University
Topics & keywords
- Leverage (statistics)
- Transfer of learning
- Computer science
- Domain adaptation
- Adaptation (eye)
- Conditional probability distribution
- Distribution (mathematics)
- Divergence (linguistics)
- No poverty